Recovery of cosparse signals with Gaussian measurements

نویسندگان

  • Holger Rauhut
  • Maryia Kabanava
چکیده

This paper provides theoretical guarantees for the recovery of signals from undersampled measurements based on `1-analysis regularization. We provide both nonuniform and stable uniform recovery guarantees for Gaussian random measurement matrices when the rows of the analysis operator form a frame. The nonuniform result relies on a recovery condition via tangent cones and the case of uniform recovery is based on an analysis version of the null space property.

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تاریخ انتشار 2013